通过步态分析评估全髋关节置换术患者骨密度的回归方法

Marco Recenti, C. Ricciardi, R. Aubonnet, L. Esposito, H. Jónsson, P. Gargiulo
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引用次数: 5

摘要

全髋关节置换术(THA)是髋关节置换手术的金标准。它可以用两种不同的假体进行:胶结和非胶结。外科医生总是根据病人的年龄、性别和x光片上的骨量来决定假体的类型。在本文中,42名受试者接受了全髋关节置换术,并通过CT扫描进行步态分析和骨密度(BMD)评估;采用机器学习回归分析,利用空间和时间步态参数预测手术前后一年股骨远端和近端骨密度。利用Python Scikit-Learn库实现了简单线性回归(LR)和k近邻(KNN),并计算了一些评价指标:决定系数(R2)、平均绝对误差、均方误差和均方根误差。两种算法在预测近端和远端上的R2均大于75%;其中,LR预测髋关节置换术前骨密度的得分最高,为88.4%,预测髋关节置换术后骨密度的得分最高,为81.3%。KNN的R2范围为75% ~ 77%。所有计算误差均小于0.001。总之,本研究表明步态参数通过预测骨密度来评估THA术后52周随访的可行性。此外,研究结果还揭示了步态模式与骨密度之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Regression Approach to Assess Bone Mineral Density of Patients undergoing Total Hip Arthroplasty through Gait Analysis
Total Hip Arthroplasty (THA) is the gold standard for hip replacement surgery. It can be performed with two different kinds of prostheses: cemented and uncemented. The surgeons have always decided on the type of prosthesis based on the age, sex of the patient and bone stock on x rays. In this paper 42 subjects underwent THA and performed both gait analysis and bone mineral density (BMD) evaluation through CT scans; spatial and temporal gait parameters were used to predict BMD of the distal and proximal parts of the femur before and one year after surgery using machine learning regression analysis. A simple linear regression (LR) and k-nearest neighbor (KNN) were implemented coding with Python Scikit-Learn libraries and some evaluation metrics were computed: the coefficient of determination (R2), mean absolute error, mean squared error and root mean squared error. Both the algorithms had a R2 greater than 75% in predicting both proximal and distal; particularly, LR obtained the highest score of 88.4% in predicting the BMD before the THA and of 81.3% after the THA. All the R2 of KNN ranged from 75% and 77%. All the calculated errors were always below 0.001. In conclusion, this research shows the feasibility of gait parameters for assessing the follow-up after 52 weeks of patients undergoing THA by predicting the BMD. Moreover, the results give insights about the relationship between the patterns of gait and BMD.
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